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An Optimization Approach of Ant Colony Algorithm and Adaptive Genetic Algorithm for MCM Interconnect Test

机译:MCM互连测试的蚁群算法和自适应遗传算法的优化方法

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An optimization approach based on ant colony algorithm (ACA) and adaptive genetic algorithm (AGA) is presented for the Multi-chip Module (MCM) interconnect test generation problem in this paper. The pheromone updating rule and state transition rule of ACA is designed for automatic test generation by combing the characteristics of MCM interconnect test AGA generates the initial candidate test vectors by utilizing genetic operator. In order to get the best test vector with the high fault coverage, ACA is employed to evolve the candidates generated by AGA. The international standard MCM benchmark circuit was used to verify the approach. Comparing with not only the evolutionary algorithms, but also the deterministic algorithms, simulation results demonstrate that the hybrid algorithm can achieve high fault coverage, compact test set and short execution time.
机译:基于蚁群算法(ACA)和自适应遗传算法(AGA)的优化方法是针对多芯片模块(MCM)互连测试生成问题的应用。通过梳理MCM互连测试AGA的特性来设计ACA的信息素更新规则和状态转换规则,通过利用遗传操作员来产生初始候选测试向量。为了获得具有高故障覆盖率的最佳测试向量,ACA用于演变AGA产生的候选者。国际标准MCM基准电路用于验证该方法。比较不仅是进化算法,而且是确定性算法,仿真结果表明,混合算法可以实现高故障覆盖,紧凑型测试集和短执行时间。

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